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Integration of Preferences in Hypervolume-Based Multiobjective Evolutionary Algorithms by Means of Desirability Functions

机译:基于需求量函数的基于超量的多目标进化算法中偏好的集成

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摘要

In this paper, a concept for efficiently approximating the practically relevant regions of the Pareto front (PF) is introduced. Instead of the original objectives, desirability functions (DFs) of the objectives are optimized, which express the preferences of the decision maker. The original problem formulation and the optimization algorithm do not have to be modified. DFs map an objective to the domain $[0, 1]$ and nonlinearly increase with better objective quality. By means of this mapping, values of different objectives and units become comparable. A biased distribution of the solutions in the PF approximation based on different scalings of the objectives is prevented. Thus, we propose the integration of DFs into the ${cal S}$-metric selection evolutionary multiobjective algorithm. The transformation ensures the meaning of the hypervolumes internally computed. Furthermore, it is shown that the reference point for the hypervolume calculation can be set intuitively. The approach is analyzed using standard test problems. Moreover, a practical validation by means of the optimization of a turning process is performed.
机译:在本文中,介绍了一种有效逼近帕累托前沿(PF)的实际相关区域的概念。代替原始目标,对目标的可取性函数(DFs)进行了优化,表达了决策者的偏好。原始问题的表述和优化算法不必修改。 DF将物镜映射到$ [0,1] $域,并以更好的物镜质量非线性增加。通过这种映射,不同目标和单位的值变得可比。防止了基于目标的不同缩放比例的PF近似中解的有偏分布。因此,我们建议将DF集成到$ {cal S} $度量选择进化多目标算法中。转换可确保内部计算的超体积的含义。此外,示出了可以直观地设置用于超体积计算的参考点。使用标准测试问题来分析该方法。此外,通过优化车削过程进行了实际验证。

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